2 Answers
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A very cheap (in terms of code size) solution is just to upsample your signal. In matlab, this can be done with interp(y ,ratio). A slightly more complicated solution consists in naively detecting peaks ; and for each peak, fitting a parabola through y[peak - 1], y[peak], y[peak + 1] ; then using the point at which this parabola is maximal as the true peak position.

Regarding peak detection

A bunch of techniques which help:

As suggested by Hilmar, convolving the signal by a Gaussian or Hann window, the width of which is roughly equal to half the minimum interval you want to see between detected peaks. Since temporal accuracy seems essential to your application, make sure that you take into account the time delay introduced by the filtering, though!

Subtract to your signal a median filtered version of itself (with a fairly large observation window) ; and divide the result by a standard-deviation filtered version of itself. This gets rid of trends and allows the thresholds to be expressed in units of standard deviations.